- If your application cares about the speed of the training process, you might want to choose 'epochs: Maximum Number of Training Epochs (Iterations)' as your stopping criteria and set it to a low number.
- If the application cares about the accuracy of the training, 'max_fail: Maximum Number of Validation Increases' would be a good choice.
- 'min_grad: Minimum Gradient Magnitude and goal: Minimum Performance Value' can be reasonable choices if the efficiency of the algorithm is of importance.
Best stopping criteria during nntool training???
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AFAQ AHMAD
il 13 Lug 2015
Commentato: AFAQ AHMAD
il 16 Lug 2015
Hi Which is best stooping criteria ,form the following while training the NN,especially in Matlab; 1-min_grad Minimum Gradient Magnitude 2-max_fail Maximum Number of Validation Increases 3-goal Minimum Performance Value 4-epochs Maximum Number of Training Epochs (Iterations) Regards
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Ghada Saleh
il 16 Lug 2015
Hi Afaq,
The best stopping criteria is application dependent. For instance:
Finally, if you are not sure what is the best stopping criteria for your application, you can simply try them all and compare their performances and then choose the one that best fits your application.
I hope the above information helps.
Ghada
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